Sparse modeling has been highly successful in many real-world applications. While a lot of interests have been on convex regularization, recent studies show that nonconvexregularizers can outperform their convex counterparts in many situations.However, the resulting nonconvex optimization problems are often challenging, especiallyfor composite regularizers such as the nonconvex overlapping group lasso. In thispaper, byusing a recent mathematical tool known as the proximal average,we propose a novel proximal gradient descent method for optimization with a wide class of nonconvex and composite regularizers.Instead of directlysolving the proximal stepassociated with a composite regularizer, we average thesolutions from the proximal problems o...
In machine learning research, the proximal gradient methods are popular for solving various optimiza...
We propose a new first-order optimisation algorithm to solve high-dimensional non-smooth composite m...
We first propose an adaptive accelerated prox-imal gradient (APG) method for minimizing strongly con...
Sparse modeling has been highly successful in many realworld applications. While a lot of interests ...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
Regularization has played a key role in de-riving sensible estimators in high dimensional statistica...
It is a common practice to approximate “complicated ” functions with more friendly ones. In large-sc...
We propose a fast first-order method to solve multi-term nonsmooth composite convex minimization pr...
Abstract The use of convex regularizers allow for easy optimization, though they often produce biase...
In many learning tasks with structural properties, structured sparse modeling usually leads to bette...
We study the problem of estimating high-dimensional regression models regularized by a structured sp...
Many important machine learning applications involve regularized nonconvex bi-level optimization. Ho...
We present a new method for regularized convex optimization and analyze it under both online and sto...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Decentralized optimization is a powerful paradigm that finds applications in engineering and learnin...
In machine learning research, the proximal gradient methods are popular for solving various optimiza...
We propose a new first-order optimisation algorithm to solve high-dimensional non-smooth composite m...
We first propose an adaptive accelerated prox-imal gradient (APG) method for minimizing strongly con...
Sparse modeling has been highly successful in many realworld applications. While a lot of interests ...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
Regularization has played a key role in de-riving sensible estimators in high dimensional statistica...
It is a common practice to approximate “complicated ” functions with more friendly ones. In large-sc...
We propose a fast first-order method to solve multi-term nonsmooth composite convex minimization pr...
Abstract The use of convex regularizers allow for easy optimization, though they often produce biase...
In many learning tasks with structural properties, structured sparse modeling usually leads to bette...
We study the problem of estimating high-dimensional regression models regularized by a structured sp...
Many important machine learning applications involve regularized nonconvex bi-level optimization. Ho...
We present a new method for regularized convex optimization and analyze it under both online and sto...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Decentralized optimization is a powerful paradigm that finds applications in engineering and learnin...
In machine learning research, the proximal gradient methods are popular for solving various optimiza...
We propose a new first-order optimisation algorithm to solve high-dimensional non-smooth composite m...
We first propose an adaptive accelerated prox-imal gradient (APG) method for minimizing strongly con...